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anonymizer.py
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"""
run clustering_based_k_anon with given parameters
"""
# !/usr/bin/env python
# coding=utf-8
from clustering_based_k_anon import clustering_based_k_anon
from utils.read_adult_data import read_data as read_adult
from utils.read_adult_data import read_tree as read_adult_tree
from utils.read_informs_data import read_data as read_informs
from utils.read_informs_data import read_tree as read_informs_tree
import sys
import copy
import pdb
import random
import cProfile
DATA_SELECT = 'a'
TYPE_ALG = 'kmember'
DEFAULT_K = 10
__DEBUG = True
def extend_result(val):
"""
separated with ',' if it is a list
"""
if isinstance(val, list):
return ','.join(val)
return val
def write_to_file(result):
"""
write the anonymized result to anonymized.data
"""
with open("data/anonymized.data", "w") as output:
for r in result:
output.write(';'.join(map(extend_result, r)) + '\n')
def get_result_one(att_trees, data, type_alg, k=DEFAULT_K):
"run clustering_based_k_anon for one time, with k=10"
print "K=%d" % k
data_back = copy.deepcopy(data)
result, eval_result = clustering_based_k_anon(att_trees, data, type_alg, k)
write_to_file(result)
data = copy.deepcopy(data_back)
print "NCP %0.2f" % eval_result[0] + "%"
print "Running time %0.2f" % eval_result[1] + "seconds"
def get_result_n(att_trees, data, type_alg, k=DEFAULT_K, n=10):
"""
run clustering_based_k_anon for n time, with k=10
"""
print "K=%d" % k
data_back = copy.deepcopy(data)
n_ncp = 0.0
n_time = 0.0
for i in range(n):
_, eval_result = clustering_based_k_anon(att_trees, data, type_alg, k)
data = copy.deepcopy(data_back)
n_ncp += eval_result[0]
n_time += eval_result[1]
n_ncp = n_ncp / n
n_time = n_ncp / n
print "Run %d times" % n
print "NCP %0.2f" % n_ncp + "%"
print "Running time %0.2f" % n_time + " seconds"
def get_result_k(att_trees, data, type_alg):
"""
change k, whle fixing QD and size of dataset
"""
data_back = copy.deepcopy(data)
all_ncp = []
all_rtime = []
# for k in range(5, 105, 5):
for k in [2, 5, 10, 25, 50, 100]:
print '#' * 30
print "K=%d" % k
_, eval_result = clustering_based_k_anon(att_trees, data, type_alg, k)
data = copy.deepcopy(data_back)
print "NCP %0.2f" % eval_result[0] + "%"
all_ncp.append(round(eval_result[0], 2))
print "Running time %0.2f" % eval_result[1] + "seconds"
all_rtime.append(round(eval_result[1], 2))
print "All NCP", all_ncp
print "All Running time", all_rtime
def get_result_dataset(att_trees, data, type_alg, k=DEFAULT_K, n=10):
"""
fix k and QI, while changing size of dataset
n is the proportion nubmber.
"""
data_back = copy.deepcopy(data)
length = len(data_back)
print "K=%d" % k
joint = 5000
datasets = []
check_time = length / joint
if length % joint == 0:
check_time -= 1
for i in range(check_time):
datasets.append(joint * (i + 1))
datasets.append(length)
all_ncp = []
all_rtime = []
for pos in datasets:
ncp = rtime = 0
print '#' * 30
print "size of dataset %d" % pos
for j in range(n):
temp = random.sample(data, pos)
_, eval_result = clustering_based_k_anon(att_trees,
temp, type_alg, k)
ncp += eval_result[0]
rtime += eval_result[1]
data = copy.deepcopy(data_back)
ncp /= n
rtime /= n
print "Average NCP %0.2f" % ncp + "%"
all_ncp.append(round(ncp, 2))
print "Running time %0.2f" % rtime + "seconds"
all_rtime.append(round(rtime, 2))
print '#' * 30
print "All NCP", all_ncp
print "All Running time", all_rtime
def get_result_qi(att_trees, data, type_alg, k=DEFAULT_K):
"""
change nubmber of QI, whle fixing k and size of dataset
"""
data_back = copy.deepcopy(data)
ls = len(data[0])
all_ncp = []
all_rtime = []
for i in range(1, ls):
print '#' * 30
print "Number of QI=%d" % i
_, eval_result = clustering_based_k_anon(att_trees,
data, type_alg, k, i)
data = copy.deepcopy(data_back)
print "NCP %0.2f" % eval_result[0] + "%"
all_ncp.append(round(eval_result[0], 2))
print "Running time %0.2f" % eval_result[1] + "seconds"
all_rtime.append(round(eval_result[1], 2))
print "All NCP", all_ncp
print "All Running time", all_rtime
if __name__ == '__main__':
FLAG = ''
LEN_ARGV = len(sys.argv)
try:
DATA_SELECT = sys.argv[1]
TYPE_ALG = sys.argv[2]
FLAG = sys.argv[3]
except IndexError:
pass
INPUT_K = 5
# read record
if DATA_SELECT == 'i':
print "INFORMS data"
DATA = read_informs()
ATT_TREES = read_informs_tree()
else:
print "Adult data"
DATA = read_adult()
ATT_TREES = read_adult_tree()
if __DEBUG:
# DATA = DATA[:2000]
# print "Test anonymization with %d records" % len(DATA)
print sys.argv
if FLAG == 'k':
get_result_k(ATT_TREES, DATA, TYPE_ALG)
elif FLAG == 'qi':
get_result_qi(ATT_TREES, DATA, TYPE_ALG)
elif FLAG == 'data':
get_result_dataset(ATT_TREES, DATA, TYPE_ALG)
elif FLAG == 'n':
get_result_n(ATT_TREES, DATA, TYPE_ALG)
elif FLAG == '':
if __DEBUG:
cProfile.run('get_result_one(ATT_TREES, DATA, TYPE_ALG)')
else:
get_result_one(ATT_TREES, DATA, TYPE_ALG)
else:
try:
INPUT_K = int(FLAG)
get_result_one(ATT_TREES, DATA, TYPE_ALG, INPUT_K)
except ValueError:
print "Usage: python anonymizer [a | i] [knn | kmember | oka] [k | qi | data| n]"
print "a: adult dataset, i: INFORMS ataset"
print "knn: k-nearest neighborhood, kmember: k-member, oka: one time pass k-means"
print "k: varying k"
print "qi: varying qi numbers"
print "data: varying size of dataset"
print "example: python anonymizer a knn 5"
print "example: python anonymizer a kmember k"
# anonymized dataset is stored in result
print "Finish Cluster based K-Anon!!"